2017
DOI: 10.1007/s11554-017-0734-z
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Techniques of medical image processing and analysis accelerated by high-performance computing: a systematic literature review

Abstract: Techniques of medical image processing and analysis play a crucial role in many clinical scenarios, including in diagnosis and treatment planning. However, immense quantities of data and high complexity of the algorithms often used are computationally demanding. As a result, there now exists a wide range of techniques of medical image processing and analysis that require the application of high-performance computing solutions in order to reduce the required runtime. The main purpose of this review is to provid… Show more

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Cited by 18 publications
(17 citation statements)
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“…In order to collect statistically sound results and take into consideration the variability and heterogeneity typically characterizing medical images, we randomly selected 30 images from 3 different patients (10 per patient) affected by brain metastases and 30 images from 3 different patients affected by ovarian cancer. We tested both the CPU and GPU versions by considering various window sizes, that is, ∈ {3, 7, 11, 15, 19, 23, 27, 31} , as well as two different intensity levels (i.e., 2 8 and 2 16 ). For each combination of and intensity levels, we also enabled and disabled the GLCM symmetry to evaluate how the symmetry affects the running time.…”
Section: Computational Resultsmentioning
confidence: 99%
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“…In order to collect statistically sound results and take into consideration the variability and heterogeneity typically characterizing medical images, we randomly selected 30 images from 3 different patients (10 per patient) affected by brain metastases and 30 images from 3 different patients affected by ovarian cancer. We tested both the CPU and GPU versions by considering various window sizes, that is, ∈ {3, 7, 11, 15, 19, 23, 27, 31} , as well as two different intensity levels (i.e., 2 8 and 2 16 ). For each combination of and intensity levels, we also enabled and disabled the GLCM symmetry to evaluate how the symmetry affects the running time.…”
Section: Computational Resultsmentioning
confidence: 99%
“…HaraliCU exploits an effective and efficient encoding, to mitigate the memory requirements related to the allocation of a GLCM having 2 16 rows and columns for each sliding window, and to the size of each GLCM, which is strictly related to the number of different gray levels inside the considered sliding window. Such an encoding removes all zero elements inside the GLCM and consists in storing each GLCM in a list-based data structure where each element is a pair ⟨ , ⟩ , with being a couple ⟨i, j⟩ of gray levels and the corresponding frequency of the considered sliding window.…”
Section: Haralicumentioning
confidence: 99%
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“…Furthermore, a fast image-processing work-flow allows scientist to perform dynamic measuring rows and to directly assure the quality of the acquired images on-site. Especially in medical imaging in the X-ray domain, GPU based image processing is well established and has shown potential for speed increase in several orders of magnitudes [5]. Noise reduction is an important first step of all image pipelines and therefore chosen as an example in this work.…”
Section: Introductionmentioning
confidence: 99%